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I have a Series indexed by a Hierarchical index that looks like this (result of some previous indexing and groupby):

myseries.index[0] = (('00037CLQ', '7/12/2013', 'AAA', 0L, 'BUY', 25L), 1000000.0)
myseries.index[1] = (('00037CMP', '7/8/2013', 'A', 0L, 'BUY', 25L), 1000000.0)

and so on

I would like to groupby on the subset of this index formed by the the last 6 entries, i.e. on sub_index, where

sub_index[0] = ('AAA', 0L, 'BUY', 25L, 1000000.0)
sub_index[1] = ('A', 0L, 'BUY', 25L, 1000000.0)

and so on

I tried a few things but none worked:

  1. myseries.reset_index(level=0) drops the entire first tuple

  2. flatten the nested tuples of the original index into a list of simple tuples and do myseries.reindex brings me to all NaN

Can somebody please shed some light?

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2  
a toy example to demonstrate this index would really help –  Andy Hayden Oct 2 '13 at 15:24
    
Here is the toy example: index = [(('a',1,'AAA'),10), (('b',2,'AA'),20), (('c',3,'AAA'),20), (('d',4,'AA'),20), (('e',5,'AAA'),20), (('f',6,'AA'),10), (('g',7,'AAA'),10), (('h',8,'AA'),10)] myseries=Series(randn(8), index) Group by only the last two entries of each nested tuple, i.e. group by sub_index = [('AAA',10), ('AA',20), ('AAA',20), ('AA',20), ('AAA',20), ('AA',10), ('AAA',10), ('AA',10)] –  user2839122 Oct 2 '13 at 17:05
    
I also tried -please see toy example in previous comment- myseries.groupby( [(x[0][2], x[1]) for x in myseries.index] ).mean() But I got the following error message: pandas.core.groupby.GroupByError: len(index) != len(labels) –  user2839122 Oct 2 '13 at 17:10
    
Big MultiIndexes can be a hassle (to repeat some advice I dished out in another answer today). This one is particularly messy, with your nested tuple. It's difficult to imagine a situation where a tuples nested in a MultiIndex is a good idea. I suggest scrapping this approach and using columns. Any grouping you need should be more straightforward when you're working with named columns. –  Dan Allan Oct 2 '13 at 17:53
1  
@user2839122 Could you show these natural operations (with something toy e.g. df = pd.DataFrame(randn(5, 5), columns=list('abcde')) then do show us the groupby... –  Andy Hayden Oct 2 '13 at 21:13

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